CN101937194A - Intelligence control system with learning function and method thereof - Google Patents

Intelligence control system with learning function and method thereof Download PDF

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Publication number
CN101937194A
CN101937194A CN 201010293425 CN201010293425A CN101937194A CN 101937194 A CN101937194 A CN 101937194A CN 201010293425 CN201010293425 CN 201010293425 CN 201010293425 A CN201010293425 A CN 201010293425A CN 101937194 A CN101937194 A CN 101937194A
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China
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learning
state
parameter
interval
state parameter
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CN 201010293425
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Chinese (zh)
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CN101937194B (en
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葛蓉
程华东
姜至善
王汉哲
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鸿富锦精密工业(深圳)有限公司
鸿海精密工业股份有限公司
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    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05BCONTROL OR REGULATING SYSTEMS IN GENERAL; FUNCTIONAL ELEMENTS OF SUCH SYSTEMS; MONITORING OR TESTING ARRANGEMENTS FOR SUCH SYSTEMS OR ELEMENTS
    • G05B19/00Programme-control systems
    • G05B19/02Programme-control systems electric
    • G05B19/04Programme control other than numerical control, i.e. in sequence controllers or logic controllers
    • G05B19/042Programme control other than numerical control, i.e. in sequence controllers or logic controllers using digital processors
    • G05B19/0426Programming the control sequence
    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05BCONTROL OR REGULATING SYSTEMS IN GENERAL; FUNCTIONAL ELEMENTS OF SUCH SYSTEMS; MONITORING OR TESTING ARRANGEMENTS FOR SUCH SYSTEMS OR ELEMENTS
    • G05B2219/00Program-control systems
    • G05B2219/20Pc systems
    • G05B2219/23Pc programming
    • G05B2219/23399Adapt set parameter as function of measured conditions

Abstract

The invention discloses an intelligence control system with learning function and a method thereof. A state record unit records the operation of the user and the preset state parameter data of the operation, a state analysis unit analyzes that if the time of the trigger-operation of the user under the same state parameter value or within the same state parameter interval is larger than or reaches to a preset time in a preset period, the operation is determined to be a learning operation, and the state parameter value or the same state parameter interval is a learning parameter value or learning parameter interval. When the current state parameter value and the learning parameter value are coincident or fall into the learning parameter interval, a main process unit executes the charge instruction corresponding to the learning operation. The intelligence control system with learning function and the intelligence control method can learn the operation habits of the user, realize the intelligence learning control, and pander to the changes of the operation habits and the favors of the user in time through the periodic analysis.

Description

Intelligence control system and method with learning functionality

Technical field

The present invention relates to a kind of intelligence control system and method, particularly a kind of intelligence control system and method with learning functionality.

Background technology

People always can do things according to the regular time table in life, for example get up at a fixed time, and are on and off duty etc.During some electronic equipment, the user always follows oneself timetable or operating habit in operation, Ding Shi switch lamp for example, and the custom of basis oneself is liked the brightness of regulating indicator screen etc. when surround lighting changes.In the different in addition time periods, the user may be because of the change of environment, mood or condition, and its custom and hobby also corresponding change can take place.

Present electronic equipment can allow the user according to oneself custom and hobby it to be carried out corresponding setup parameter, but when user's custom and hobby change, the user needs the setup parameter of artificial change electronic equipment to adapt to oneself new custom and hobby, and electronic equipment can not be adjusted corresponding setup parameter according to the change of user's custom and hobby automatically.

Summary of the invention

In view of this, the invention provides a kind of intelligence control system and intelligence control method with learning functionality.

A kind of intelligence control system with learning functionality comprises input block, storage unit and Main Processor Unit, and input block is used for responding user's operation, produces input signal, and Main Processor Unit is carried out command adapted thereto according to described input signal.Described intelligence control system with learning functionality also comprises: the state sensing unit is used for detecting the current state parameter of intelligence control system; The state recording unit, receive input block response user when operating the input signal of generation, obtain the currency of the preset state parameter that this state detecting unit detects, and the currency of the preset state parameter will write down this user's operation and this user and operate the time is stored in storage unit; And state analysis unit, determine that according to the data that write down in the state recording unit user triggers the number of times that an operation takes place under same state parameter value or in the same state parameter interval in a predetermined period, and described number of times greater than or when reaching a preset times, judgement under this state parameter value or the interval internal trigger of state parameter be operating as learning manipulation, this state parameter value or state parameter interval are learning parameter value or learning parameter interval.Wherein, to detect the currency of preset state parameter consistent with the learning parameter value or when falling in the learning state interval when the state detecting unit, send a trigger pip to Main Processor Unit, described Main Processor Unit is determined this learning parameter value or the interval corresponding learning manipulation of learning parameter according to this trigger pip, and produces this learning manipulation control instruction corresponding.

A kind of intelligence control method with learning functionality may further comprise the steps:

(a) currency of the operation of recording user and corresponding preset state parameter;

(b) analyze in a predetermined period, the user is under same state parameter value or the number of times of interval internal trigger one operation of same state parameter;

(c) judge described number of times whether greater than or when reaching a preset times, when described number of times greater than or when reaching this preset times, determine the user under this state parameter value or the interval internal trigger of state parameter be operating as learning manipulation, under this state parameter value or state parameter interval is learning parameter value or learning parameter interval;

(d) store learning manipulation and corresponding learning parameter value or learning parameter interval thereof;

(e) judge that preset state parameter currency is whether consistent with the learning parameter value or fall in the learning parameter interval, consistent with the learning parameter value or fall in the learning parameter interval at preset state parameter currency, send trigger pip;

(f) the response trigger pip is carried out the learning manipulation control instruction corresponding.

This has the intelligence control system of learning functionality and intelligence control method can learn user's operating habit according to the user carries out same operation under same state parameter condition number of times, realization intelligence learning control, the user is without repeating same operation every day.Utilize the operating habit of periodic analysis user, can cater to user's the operating habit and the change of hobby timely.

Description of drawings

Fig. 1 is the module map that the present invention has the intelligence control system of learning functionality.

Fig. 2 is the control method process flow diagram of the intelligence control system of the present invention with learning functionality.

The main element symbol description

Intelligence control system 100 Input block 10 Main Processor Unit 20 Unit 30 The state detecting unit 301 The state recording unit 302 The state analysis unit 303 Storage unit 40 Sensor unit 50 Step S1、S2、S3、S4、S5、S6

Embodiment

Please refer to Fig. 1, have the module map of the intelligence control system 100 of learning functionality for the present invention.This intelligence control system comprises input block 10, Main Processor Unit 20, unit 30 and storage unit 40 (not having 40 among the figure).Described unit 30 comprises state detecting unit 301, state recording unit 302, reaches state analysis unit 303.

Input block 10 is used to respond user's operation, produces input signal.This input block 10 can be the power control unit, brightness of display screen regulon, volume control unit etc. for user operation in the hand-hold electronic equipments, and this input block 10 can be the power control unit, brightness adjusting unit, colour temperature regulon etc. for user's operation in lighting.

Main Processor Unit 20 is used for receiving the input signal of input block 10, sends steering order.

State detecting unit 301 is used for obtaining the current state parameter of intelligence control system 100.This state detecting unit 301 is connected with sensor unit 50.Described sensor unit 50 comprises clock detecting unit, temperature sensor unit, optical sensor unit, sensor noise unit etc.50 pairs of current state parameters of sensor unit carry out real time scan detecting, and will detect the result and be sent to state detecting unit 301.

State recording unit 302 receives input block 10 response users when operating the input signal of generation, obtain the preset state parameter currency that this state detecting unit 301 detects from state detecting unit 301, the currency of the preset state parameter when writing down this user operation and this user and operating is in storage unit 40.When for example state recording unit 302 receives the power-on command of input block 10 response users one start operation generation, if the current time that this state detecting unit 301 detects is 08:00, then write down one and be operating as " start ", and " start " when operation correspondence the data of " on time 08:00 ", and with this data storing in state recording unit 302.Because user's the always only corresponding some default state parameters of operation, for example the user always habitually carries out " start ", " shutdown " operation at fixed time, so " start ", " shutdown " operation corresponding preset state parameter is " a time state parameter ", the operation that the user carries out electronic equipment " adjusting brightness " is generally always relevant with the environment light intensity, so " adjusting brightness " operation corresponding preset state parameter is " ambient light intensity ".Therefore, in the present embodiment, user operation all is one to one with the preset state parameter, and this state recording unit 302 receives after input block 10 response users operate the input signal of generation, obtains the currency of this operation corresponding preset state parameter from this state detecting unit 301.

State analysis unit 303 be used for data statistic analysis according to state recording unit 302 record in a predetermined period under same state parameter value the user trigger the number of times of an operation.If the number of times that the user triggers this operation under this state parameter value greater than or reach a preset value, then judge the learning manipulation that is operating as that under this state parameter value, triggers, the state parameter value of this learning manipulation correspondence is the learning parameter value, and described learning manipulation and corresponding learning parameter value thereof are stored in this storage unit 40; If less than preset value, then be judged as non-learning manipulation.

For example user's operation of starting shooting is established default learning cycle and is set at 3 days, and preset times is 3.According to the data of record in the state recording unit 302, in predetermined period 3 days were determined in state analysis unit 303, every day, the user carried out the start operation during 08:00, and promptly the user carries out the start operation in the time state parameter during for 08:00 and reaches preset value 3 times.The start that 303 judgements in state analysis unit are carried out when 08:00 is operating as learning manipulation, and on time 08:00 is the learning parameter value, and described learning manipulation and corresponding learning parameter value thereof are stored in this storage unit 40.If state analysis unit 303 determines that in 3 days of predetermined period the user only has two days and carry out the start operation when 08:00, then is judged as non-learning manipulation.

In another embodiment, described state analysis unit 303 be used for data statistic analysis according to state recording unit 302 records in a predetermined period under same state parameter interval the user trigger the number of times of an operation.If state analysis unit 303 analyze number of times that in same state parameter interval users trigger an operation greater than or reach a preset value, then judge the learning manipulation that is operating as that under this state parameter interval, triggers, state analysis unit 303 judges that according to the mechanism that sets in advance a certain value in the state parameter interval of this learning manipulation correspondence is the learning parameter value, and described learning manipulation and corresponding learning parameter value thereof are stored in this storage unit 40.

For example user's operation of starting shooting is established default learning cycle and is set at 3 days, and preset times is 3, and state parameter is the time, and five minutes to serve as at interval between dividing regions, is first interval as [08:00,08:05], and [08:06,08:10] is second interval, so analogizes.Data according to record in the state recording unit 302, in in predetermined period 3 days were determined in state analysis unit 303, every day, the user carried out the start operation during 08:00-08:05, be that the interior execution start of user [08:00,08:05] between time state parameter region operation reaches preset value 3 times.The start that 303 judgements in state analysis unit are carried out when 08:00-08:05 is operating as learning manipulation, judge that according to the mechanism that sets in advance on time 08:00 is the learning parameter value, described learning manipulation and corresponding learning parameter value thereof are stored in this storage unit 40.If state analysis unit 303 determines that in 3 days of predetermined period the user only has first day and carry out the start operation last day when 08:00-08:05, then is judged as non-learning manipulation.

In the above-mentioned specific embodiment, it is the learning parameter value that the mechanism that sets in advance can be set this interval interior arbitrary value (for example 08:05), and also can set this interval intermediate value is the learning parameter value.

Be that example describes again with the brightness adjustment operation, if default learning cycle is 3 days, preset times is 3, and state parameter is set at ambient light intensity, and (lux is an intensity of illumination unit with 100 luxs, the luminous flux of representing 1 lumen is evenly distributed on 1 square metre of illumination on the area) between dividing regions, as [0,100) lux is first interval, [100,200) be second interval, so analogize.Data according to record in the analysis state record cell 302, obtain in a predetermined period 3 days in the same state parameter interval, as [100,200) in the interval, lux the time, whether the number of times that the user carries out the operation of adjusting (turn down or heighten) brightness of display screen surpasses 3.If surpass, the adjusting brightness of display screen that 303 judgements in state analysis unit are carried out when ambient light intensity is in this state parameter interval is operating as learning manipulation, and this state parameter interval is the learning parameter interval.State analysis unit 303 is stored in described learning manipulation and corresponding learning parameter interval thereof in this storage unit 40.In this example, also comprise in the learning manipulation display screen after regulating brightness value or the information such as brightness regulation ratio of display screen.The brightness value of this display screen after regulating is by regulating the user the average gained of brightness value that reaches, for example, in learning cycle, the user is in [100 in environmental light brightness 3 times, 200) respectively brightness of display screen is adjusted to a in the time of in the interval, lux, b, and c (a, b, c are expressed as the concrete numerical value of brightness of display screen herein), then learning manipulation is " brightness of display screen is adjusted to n ", wherein n is a, b, and c three's mean value, this mean value can adopt the arithmetic mean value-based algorithm, also can adopt the geometric mean value-based algorithm.In another embodiment, the brightness value of this display screen after regulating also can be got a, b, and c three in any one value, as get c.The brightness number percent average gained of the brightness regulation ratio of this display screen by the user is regulated, for example, in learning cycle, user 4 times be in environmental light brightness [100,200) A% that brightness of display screen heightened (or turning down) respectively in the interval, lux the time, B%, C%, and D%, then learning manipulation is " brightness of display screen being heightened (or turning down) N% ", wherein N is A, B, C, and the mean value of D, in another embodiment, the brightness regulation ratio of this display screen also can be got A%, B%, C%, and D% three in any one value, as get D%.

State detecting unit 301 obtains the learning manipulation and the corresponding learning parameter value or the interval of storage in the storage unit 40, current state parameter value is carried out the real time scan detecting, consistent with the learning parameter value or fall into learning parameter when interval when detecting the current state parameter value, send a trigger pip Main Processor Unit 20, Main Processor Unit 20 is determined the learning manipulation of this learning parameter correspondence according to this trigger pip, and produces this learning manipulation control instruction corresponding.For example user's operation of starting shooting, the start of carrying out during at 08:00-08:05 in 303 judgements of a last predetermined period internal state analytic unit is operating as learning manipulation, on time 08:00 is a learning parameter, and described learning manipulation and corresponding learning parameter thereof are stored in this storage unit 40.If this state detecting unit 301 detects the current time when being learning parameter value " time 08:00 ", this state detecting unit 301 sends a trigger pip to Main Processor Unit 20, Main Processor Unit 20 is determined the learning manipulation " start " that this learning parameter value " time 08:00 " is corresponding according to the trigger pip that receives, and carries out this learning manipulation " start " control instruction corresponding.Brightness of display screen is regulated operation for another example, " brightness of display screen is adjusted to n " and corresponding learning parameter interval " environmental light brightness [100; 200) lux " according to the learning manipulation of having stored, if this state detecting unit 301 detects current environment light intensity " 138 lux " and is in the learning parameter interval, this state detecting unit sends a trigger pip to Main Processor Unit 20, Main Processor Unit 20 determines that according to the trigger pip that receives the corresponding learning manipulation in this learning parameter interval " environmental light brightness [100,200) lux " is for regulating brightness of display screen to n.

In the above-described embodiment, in each predetermined period, this state analysis unit 303 all determines that according to the data of state recording unit 302 record the user triggers the number of times that an operation takes place under same state parameter value or in the same state parameter interval in predetermined period, thereby determine whether this operation and this state parameter are learning manipulation and learning parameter value or interval, and it is stored in storage unit 40.This state detecting unit 301 carries out corresponding operating according to the learning parameter value or the learning parameter interval of storage unit 40 stored.

Intelligence control system 100 also allows the user that the learning manipulation and corresponding habit parameter value or the learning parameter interval thereof that are stored in the storage unit 40 are deleted, and the user can be according to the wherein any learning manipulation of wish deletion of oneself.

Please refer to Fig. 2, have the control method process flow diagram of the intelligence control system of learning functionality for the present invention, may further comprise the steps:

Step S1: the operation of recording user and corresponding preset state parameter data.State recording unit 302 receives input block 10 response users when operating the input signal of generation, obtain the preset state parameter currency that this state detecting unit 301 detects from state detecting unit 301, the data of the preset state parameter when writing down this user operation and this user and operating are in storage unit 40.

Step S2: analyze in a predetermined period, the user is under same state parameter value or the number of times of interval internal trigger one operation of same state parameter.State analysis unit 303 is according to the data analysis of state recording unit 302 record and determine that in predetermined period the user triggers the number of times that an operation takes place under same state parameter value or in the same state parameter interval.

Step S3: state analysis unit 303 judge described number of times whether greater than or reach a preset value.

If state analysis unit 303 judges that described number of times is less than a preset value, then step is returned step S2, otherwise execution in step S4: judge the learning manipulation that is operating as in this state parameter value or the interval internal trigger of state parameter, state analysis unit 303 judges that according to the mechanism that sets in advance a certain value in the state parameter interval of this learning manipulation correspondence is the learning parameter value, and described learning manipulation and corresponding learning parameter value thereof are stored in this storage unit 40.

Step S5: this state detecting unit 301 is judged that the current state parameter value is whether consistent with the learning parameter value or is fallen into the learning parameter interval.The 301 pairs of current state parameters in this state detecting unit carry out real time scan detecting, and whether detect the current state parameter value consistent with the learning parameter value.

If the currency that the preset state parameters are judged in this state detecting unit 301 is inconsistent or when not falling into the learning parameter interval with the learning parameter value, return step S5, otherwise execution in step S6: this state detecting unit 301 sends a trigger pip to Main Processor Unit 20, the pairing charge instruction of the learning manipulation that this Main Processor Unit 20 is carried out this learning parameter correspondence.Wherein, Main Processor Unit 20 is determined the learning manipulation of this learning parameter correspondence according to the trigger pip that receives, and carries out this learning manipulation control instruction corresponding.

Described intelligence control system 100 can be learnt user's operating habit according to the user carries out same operation under same state parameter condition number of times, realizes intelligence learning control, and the user is without repeating same operation every day.Utilize the operating habit of periodic analysis user, can cater to user's the operating habit and the change of hobby timely.

Those skilled in the art will be appreciated that; above embodiment only is to be used for illustrating the present invention; and be not to be used as limitation of the invention; as long as within connotation scope of the present invention, appropriate change and the variation that above embodiment did all dropped within the scope of protection of present invention.

Claims (7)

1. intelligence control system with learning functionality, comprise input block, storage unit and Main Processor Unit, input block is used for responding user's operation, produce input signal, Main Processor Unit is carried out command adapted thereto according to described input signal, and described intelligence control system with learning functionality also comprises:
The state sensing unit is used for detecting the current state parameter of intelligence control system;
The state recording unit, receive input block response user when operating the input signal of generation, obtain the currency of the preset state parameter that this state detecting unit detects, and the currency of the preset state parameter will write down this user's operation and this user and operate the time is stored in storage unit; And
The state analysis unit, determine that according to the data that write down in the state recording unit user triggers the number of times that an operation takes place under same state parameter value or in the same state parameter interval in a predetermined period, and described number of times greater than or when reaching a preset times, judgement under this state parameter value or the interval internal trigger of state parameter be operating as learning manipulation, this state parameter value or state parameter interval are learning parameter value or learning parameter interval;
Wherein, to detect the currency of preset state parameter consistent with the learning parameter value or when falling in the learning state interval when the state detecting unit, send a trigger pip to Main Processor Unit, described Main Processor Unit is determined this learning parameter value or the interval corresponding learning manipulation of learning parameter according to this trigger pip, and produces this learning manipulation control instruction corresponding.
2. the intelligence control system with learning functionality as claimed in claim 1, it is characterized in that: also comprise a sensor unit, this sensor unit is connected with the state detecting unit, be used for the state parameter currency of detecting real-time intelligence control system, and will detect the result and be sent to the state detecting unit.
3. the intelligence control system with learning functionality as claimed in claim 1 is characterized in that: described state analysis unit also is used for judging that according to the mechanism that sets in advance the particular value in the state parameter interval of this learning manipulation correspondence is the learning parameter value.
4. have the intelligence control system of learning functionality according to claim 1, it is characterized in that: it is the learning parameter value that described state analysis unit also is used for setting this interval intermediate value according to the mechanism that sets in advance.
5. the intelligence control method with learning functionality is characterized in that, this method may further comprise the steps:
(a) currency of the operation of recording user and corresponding preset state parameter;
(b) analyze in a predetermined period, the user is under same state parameter value or the number of times of interval internal trigger one operation of same state parameter;
(c) judge described number of times whether greater than or when reaching a preset times, when described number of times greater than or when reaching this preset times, determine the user under this state parameter value or the interval internal trigger of state parameter be operating as learning manipulation, under this state parameter value or state parameter interval is learning parameter value or learning parameter interval;
(d) store learning manipulation and corresponding learning parameter value or learning parameter interval thereof;
(e) judge that preset state parameter currency is whether consistent with the learning parameter value or fall in the learning parameter interval, consistent with the learning parameter value or fall in the learning parameter interval at preset state parameter currency, send trigger pip;
(f) the response trigger pip is carried out the learning manipulation control instruction corresponding.
6. the intelligence control method with learning functionality as claimed in claim 5 is characterized in that: described step (c) also comprises according to the mechanism that sets in advance judges that the particular value in the state parameter interval of this learning manipulation correspondence is the learning parameter value.
7. the intelligence control method with learning functionality as claimed in claim 5 is characterized in that: described step (c) also comprises according to the mechanism that sets in advance judges that the intermediate value in the state parameter interval of this learning manipulation correspondence is the learning parameter value.
CN 201010293425 2010-09-27 2010-09-27 Intelligence control system with learning function and method thereof CN101937194B (en)

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